Author:
Çağlar İlksen,Altılar Deniz Turgay
Abstract
AbstractEnergy efficiency is an important issue for reducing environmental dissipation. Energy efficient resource provisioning in cloud environments is a challenging problem because of its dynamic nature and varied application workload characteristics. In the literature, live migration of virtual machines (VMs) among servers is commonly proposed to reduce energy consumption and to optimize resource usage, although it comes with essential drawbacks, such as migration cost and performance degradation. Energy efficient provisioning is addressed at the data center level in this research. A novel efficient resource management algorithm for virtualized data centers that optimizes the number of servers to meet the requirements of dynamic workloads without migration is proposed in this paper. The proposed approach, named Look-ahead Energy Efficient VM Allocation (LAA), contains a Holt Winters-based prediction module. Energy efficiency and performance are inversely proportional. The energy-performance trade-off relies on periodic comparisons of the predicted and active numbers of servers. To evaluate the proposed algorithm, experiments are conducted with real-world workload traces from Google Cluster. LAA is compared with the best approach provided by CloudSim based on VM migration called Local Regression-Minimum Migration Time (LR-MMT). The experimental results show that the proposed algorithm leads to a consumption reduction of up to 45% to complete one workload compared with the LR-MMT.
Publisher
Springer Science and Business Media LLC
Subject
Computer Networks and Communications,Software
Reference42 articles.
1. Kaur T, Chana I (2018) GreenSched: An intelligent energy aware scheduling for deadline-and-budget constrained cloud tasks. Simul Model Pract Theory 82:55–83
2. Cao J, Wu Y, Li M (2012) Energy efficient allocation of virtual machines in cloud computing environments based on demand forecast. In international conference on grid and pervasive computing. Springer, Berlin, pp 137–151
3. Garg SK, Yeo CS, Anandasivam A, Buyya R (2011) Environment-conscious scheduling of HPC applications on distributed cloud-oriented data centers. J Parallel Distrib Comput 71(6):732–749
4. Stillwell M, Schanzenbach D, Vivien F, Casanova H (2009) Resource allocation using virtual clusters. In 2009 9th IEEE/ACM international symposium on cluster computing and the grid. pp 260–267
5. Xu L, Seng S, Ye X (2012) Multi-objective optimization based virtual resource allocation strategy for cloud computing. In 2012 IEEE/ACIS 11th international conference on computer and information science. pp 56–61
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献